Skil-AI
Published in

Skil-AI

Divide and Conquer — How to Deal With Complex Datasets

Real-life data is messy, complex, and hard to understand! Let’s see how we can make it a little simpler!

Photo by Lysander Yuen on Unsplash

One of my favourite approaches to dealing with large, complex problems is to break them down into smaller, more manageable sub-problems. This makes it easier to focus on the important bits without…

--

--

--

Skil AI team Engineering Publications

Recommended from Medium

What Can You Do With R? 6 Essential R Packages for Programmers

Data Science MOOCs are too Superficial

Detection in Crowded Scenes: One Proposal Multiple Predictions

One Thing You Can’t Skip — Data Science Methodology

How a Data Scientist buys a car

How to calculate the impermanent loss of uniswap V3?

Ranked Choice Voting wins in New York City. Heres how it stacks up to other voting systems.

Process Mining: A Powerful Technique to Uncover Insights from Flow-based Events — Part 1

Get the Medium app

A button that says 'Download on the App Store', and if clicked it will lead you to the iOS App store
A button that says 'Get it on, Google Play', and if clicked it will lead you to the Google Play store
Thilina Rajapakse

Thilina Rajapakse

AI researcher, avid reader, fantasy and Sci-Fi geek, and fan of the Oxford comma. www.linkedin.com/in/t-rajapakse/

More from Medium

What are Large Language Models?

A photo of lots of books, all open, from above

Machine Learning’s Sweet Spot

Daily learning notes — 10th May

Understanding Topic Modelling Models: LDA, NMF, LSI, and their implementation